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Learning with User-Level Privacy
v1v2v3 (latest)

Learning with User-Level Privacy

23 February 2021
Daniel Levy
Ziteng Sun
Kareem Amin
Satyen Kale
Alex Kulesza
M. Mohri
A. Suresh
    FedML
ArXiv (abs)PDFHTML

Papers citing "Learning with User-Level Privacy"

50 / 65 papers shown
Title
Black-Box Privacy Attacks on Shared Representations in Multitask Learning
Black-Box Privacy Attacks on Shared Representations in Multitask Learning
John Abascal
Nicolás Berrios
Alina Oprea
Jonathan R. Ullman
Adam D. Smith
Matthew Jagielski
MLAU
18
0
0
19 Jun 2025
Nosy Layers, Noisy Fixes: Tackling DRAs in Federated Learning Systems using Explainable AI
Nosy Layers, Noisy Fixes: Tackling DRAs in Federated Learning Systems using Explainable AI
Meghali Nandi
Arash Shaghaghi
Nazatul Haque Sultan
Gustavo Batista
Raymond K. Zhao
Sanjay Jha
AAML
167
0
0
16 May 2025
Video-DPRP: A Differentially Private Approach for Visual Privacy-Preserving Video Human Activity Recognition
Allassan Tchangmena A Nken
Susan Mckeever
Peter Corcoran
Ihsan Ullah
PICV
96
0
0
03 Mar 2025
Towards User-level Private Reinforcement Learning with Human Feedback
Towards User-level Private Reinforcement Learning with Human Feedback
Jing Zhang
Mingxi Lei
Meng Ding
Mengdi Li
Zihang Xiang
Difei Xu
Jinhui Xu
Di Wang
107
3
0
22 Feb 2025
Characterizing the Accuracy-Communication-Privacy Trade-off in Distributed Stochastic Convex Optimization
Sudeep Salgia
Nikola Pavlovic
Yuejie Chi
Qing Zhao
114
0
0
06 Jan 2025
Faster Algorithms for User-Level Private Stochastic Convex Optimization
Faster Algorithms for User-Level Private Stochastic Convex Optimization
Andrew Lowy
Daogao Liu
Hilal Asi
53
1
0
24 Oct 2024
Calibrating Noise for Group Privacy in Subsampled Mechanisms
Calibrating Noise for Group Privacy in Subsampled Mechanisms
Yangfan Jiang
Xinjian Luo
Yin Yang
Xiaokui Xiao
97
3
0
19 Aug 2024
Private Means and the Curious Incident of the Free Lunch
Private Means and the Curious Incident of the Free Lunch
Jack Fitzsimons
James Honaker
Michael Shoemate
Vikrant Singhal
87
2
0
19 Aug 2024
Better Locally Private Sparse Estimation Given Multiple Samples Per User
Better Locally Private Sparse Estimation Given Multiple Samples Per User
Yuheng Ma
Ke Jia
Hanfang Yang
FedML
85
1
0
08 Aug 2024
Private Heterogeneous Federated Learning Without a Trusted Server
  Revisited: Error-Optimal and Communication-Efficient Algorithms for Convex
  Losses
Private Heterogeneous Federated Learning Without a Trusted Server Revisited: Error-Optimal and Communication-Efficient Algorithms for Convex Losses
Changyu Gao
Andrew Lowy
Xingyu Zhou
Stephen J. Wright
FedML
63
5
0
12 Jul 2024
Fine-Tuning Large Language Models with User-Level Differential Privacy
Fine-Tuning Large Language Models with User-Level Differential Privacy
Zachary Charles
Arun Ganesh
Ryan McKenna
H. B. McMahan
Nicole Mitchell
Krishna Pillutla
Keith Rush
81
14
0
10 Jul 2024
Minimax And Adaptive Transfer Learning for Nonparametric Classification
  under Distributed Differential Privacy Constraints
Minimax And Adaptive Transfer Learning for Nonparametric Classification under Distributed Differential Privacy Constraints
Arnab Auddy
T. T. Cai
Abhinav Chakraborty
95
1
0
28 Jun 2024
Mind the Privacy Unit! User-Level Differential Privacy for Language
  Model Fine-Tuning
Mind the Privacy Unit! User-Level Differential Privacy for Language Model Fine-Tuning
Lynn Chua
Badih Ghazi
Yangsibo Huang
Pritish Kamath
Ravi Kumar
Daogao Liu
Pasin Manurangsi
Amer Sinha
Chiyuan Zhang
101
14
0
20 Jun 2024
Optimal Federated Learning for Nonparametric Regression with
  Heterogeneous Distributed Differential Privacy Constraints
Optimal Federated Learning for Nonparametric Regression with Heterogeneous Distributed Differential Privacy Constraints
T. T. Cai
Abhinav Chakraborty
Lasse Vuursteen
FedML
83
3
0
10 Jun 2024
Federated Nonparametric Hypothesis Testing with Differential Privacy
  Constraints: Optimal Rates and Adaptive Tests
Federated Nonparametric Hypothesis Testing with Differential Privacy Constraints: Optimal Rates and Adaptive Tests
T. T. Cai
Abhinav Chakraborty
Lasse Vuursteen
FedML
77
2
0
10 Jun 2024
Learning with User-Level Local Differential Privacy
Learning with User-Level Local Differential Privacy
Puning Zhao
Li Shen
Rongfei Fan
Qingming Li
Huiwen Wu
Xiaogang Xu
Zhe Liu
55
3
0
27 May 2024
A Huber Loss Minimization Approach to Mean Estimation under User-level
  Differential Privacy
A Huber Loss Minimization Approach to Mean Estimation under User-level Differential Privacy
Puning Zhao
Lifeng Lai
Li Shen
Qingming Li
Xiaogang Xu
Zhe Liu
79
7
0
22 May 2024
Online Learning with Unknown Constraints
Online Learning with Unknown Constraints
Karthik Sridharan
Seung Won Wilson Yoo
63
2
0
06 Mar 2024
Defending Against Data Reconstruction Attacks in Federated Learning: An
  Information Theory Approach
Defending Against Data Reconstruction Attacks in Federated Learning: An Information Theory Approach
Qi Tan
Qi Li
Yi Zhao
Zhuotao Liu
Xiaobing Guo
Ke Xu
FedML
78
2
0
02 Mar 2024
Clients Collaborate: Flexible Differentially Private Federated Learning with Guaranteed Improvement of Utility-Privacy Trade-off
Clients Collaborate: Flexible Differentially Private Federated Learning with Guaranteed Improvement of Utility-Privacy Trade-off
Yuecheng Li
Lele Fu
Tong Wang
Jian Lou
Bin Chen
Lei Yang
Zibin Zheng
Zibin Zheng
Chuan Chen
FedML
104
4
0
10 Feb 2024
Mean Estimation with User-Level Privacy for Spatio-Temporal IoT Datasets
Mean Estimation with User-Level Privacy for Spatio-Temporal IoT Datasets
V. A. Rameshwar
Anshoo Tandon
Prajjwal Gupta
Aditya Vikram Singh
Novoneel Chakraborty
Abhay Sharma
85
3
0
29 Jan 2024
User-level Differentially Private Stochastic Convex Optimization:
  Efficient Algorithms with Optimal Rates
User-level Differentially Private Stochastic Convex Optimization: Efficient Algorithms with Optimal Rates
Hilal Asi
Daogao Liu
69
11
0
07 Nov 2023
SoK: Memorization in General-Purpose Large Language Models
SoK: Memorization in General-Purpose Large Language Models
Valentin Hartmann
Anshuman Suri
Vincent Bindschaedler
David Evans
Shruti Tople
Robert West
KELMLLMAG
89
24
0
24 Oct 2023
User Inference Attacks on Large Language Models
User Inference Attacks on Large Language Models
Nikhil Kandpal
Krishna Pillutla
Alina Oprea
Peter Kairouz
Christopher A. Choquette-Choo
Zheng Xu
SILMAAML
132
19
0
13 Oct 2023
Better and Simpler Lower Bounds for Differentially Private Statistical
  Estimation
Better and Simpler Lower Bounds for Differentially Private Statistical Estimation
Shyam Narayanan
FedML
68
11
0
10 Oct 2023
User-Level Differential Privacy With Few Examples Per User
User-Level Differential Privacy With Few Examples Per User
Badih Ghazi
Pritish Kamath
Ravi Kumar
Pasin Manurangsi
Raghu Meka
Chiyuan Zhang
89
12
0
21 Sep 2023
Share Your Representation Only: Guaranteed Improvement of the
  Privacy-Utility Tradeoff in Federated Learning
Share Your Representation Only: Guaranteed Improvement of the Privacy-Utility Tradeoff in Federated Learning
Zebang Shen
Jiayuan Ye
Anmin Kang
Hamed Hassani
Reza Shokri
FedML
92
18
0
11 Sep 2023
ULDP-FL: Federated Learning with Across Silo User-Level Differential
  Privacy
ULDP-FL: Federated Learning with Across Silo User-Level Differential Privacy
Fumiyuki Kato
Li Xiong
Shun Takagi
Yang Cao
Masatoshi Yoshikawa
FedML
69
4
0
23 Aug 2023
Mean Estimation with User-level Privacy under Data Heterogeneity
Mean Estimation with User-level Privacy under Data Heterogeneity
Rachel Cummings
Vitaly Feldman
Audra McMillan
Kunal Talwar
FedML
71
27
0
28 Jul 2023
Randomized Quantization is All You Need for Differential Privacy in
  Federated Learning
Randomized Quantization is All You Need for Differential Privacy in Federated Learning
Yeojoon Youn
Zihao Hu
Juba Ziani
Jacob D. Abernethy
FedML
70
21
0
20 Jun 2023
Differentially Private Wireless Federated Learning Using Orthogonal
  Sequences
Differentially Private Wireless Federated Learning Using Orthogonal Sequences
Xizixiang Wei
Tianhao Wang
Ruiquan Huang
Cong Shen
Jing Yang
H. Vincent Poor
95
1
0
14 Jun 2023
Federated Linear Contextual Bandits with User-level Differential Privacy
Federated Linear Contextual Bandits with User-level Differential Privacy
Ruiquan Huang
Huanyu Zhang
Luca Melis
Milan Shen
Meisam Hajzinia
J. Yang
FedML
54
12
0
08 Jun 2023
Concentrated Geo-Privacy
Concentrated Geo-Privacy
Yuting Liang
K. Yi
51
6
0
31 May 2023
Training Data Extraction From Pre-trained Language Models: A Survey
Training Data Extraction From Pre-trained Language Models: A Survey
Shotaro Ishihara
118
48
0
25 May 2023
Learning across Data Owners with Joint Differential Privacy
Learning across Data Owners with Joint Differential Privacy
Yangsibo Huang
Haotian Jiang
Daogao Liu
Mohammad Mahdian
Jieming Mao
Vahab Mirrokni
FedML
75
0
0
25 May 2023
Post-processing Private Synthetic Data for Improving Utility on Selected
  Measures
Post-processing Private Synthetic Data for Improving Utility on Selected Measures
Hao Wang
Shivchander Sudalairaj
J. Henning
Kristjan Greenewald
Akash Srivastava
53
6
0
24 May 2023
On User-Level Private Convex Optimization
On User-Level Private Convex Optimization
Badih Ghazi
Pritish Kamath
Ravi Kumar
Raghu Meka
Pasin Manurangsi
Chiyuan Zhang
FedML
56
10
0
08 May 2023
A Polynomial Time, Pure Differentially Private Estimator for Binary
  Product Distributions
A Polynomial Time, Pure Differentially Private Estimator for Binary Product Distributions
Vikrant Singhal
91
9
0
13 Apr 2023
Subset-Based Instance Optimality in Private Estimation
Subset-Based Instance Optimality in Private Estimation
Travis Dick
Alex Kulesza
Ziteng Sun
A. Suresh
101
9
0
01 Mar 2023
Personalized Privacy-Preserving Framework for Cross-Silo Federated
  Learning
Personalized Privacy-Preserving Framework for Cross-Silo Federated Learning
Van Tuan Tran
Huy Hieu Pham
Kok-Seng Wong
FedML
85
8
0
22 Feb 2023
Multi-Message Shuffled Privacy in Federated Learning
Multi-Message Shuffled Privacy in Federated Learning
Antonious M. Girgis
Suhas Diggavi
FedML
95
9
0
22 Feb 2023
Multi-Task Differential Privacy Under Distribution Skew
Multi-Task Differential Privacy Under Distribution Skew
Walid Krichene
Prateek Jain
Shuang Song
Mukund Sundararajan
Abhradeep Thakurta
Li Zhang
FedML
61
3
0
15 Feb 2023
Continual Mean Estimation Under User-Level Privacy
Continual Mean Estimation Under User-Level Privacy
Anand George
Lekshmi Ramesh
A. V. Singh
Himanshu Tyagi
FedML
70
9
0
20 Dec 2022
Learning to Generate Image Embeddings with User-level Differential
  Privacy
Learning to Generate Image Embeddings with User-level Differential Privacy
Zheng Xu
Maxwell D. Collins
Yuxiao Wang
Liviu Panait
Sewoong Oh
S. Augenstein
Ting Liu
Florian Schroff
H. B. McMahan
FedML
92
30
0
20 Nov 2022
Discrete Distribution Estimation under User-level Local Differential
  Privacy
Discrete Distribution Estimation under User-level Local Differential Privacy
Jayadev Acharya
Yuhan Liu
Ziteng Sun
64
16
0
07 Nov 2022
Subspace Recovery from Heterogeneous Data with Non-isotropic Noise
Subspace Recovery from Heterogeneous Data with Non-isotropic Noise
John C. Duchi
Vitaly Feldman
Lunjia Hu
Kunal Talwar
FedML
58
12
0
24 Oct 2022
Algorithms with More Granular Differential Privacy Guarantees
Algorithms with More Granular Differential Privacy Guarantees
Badih Ghazi
Ravi Kumar
Pasin Manurangsi
Thomas Steinke
120
7
0
08 Sep 2022
A Generative Framework for Personalized Learning and Estimation: Theory,
  Algorithms, and Privacy
A Generative Framework for Personalized Learning and Estimation: Theory, Algorithms, and Privacy
Kaan Ozkara
Antonious M. Girgis
Deepesh Data
Suhas Diggavi
FedML
58
3
0
05 Jul 2022
On Privacy and Personalization in Cross-Silo Federated Learning
On Privacy and Personalization in Cross-Silo Federated Learning
Ziyu Liu
Shengyuan Hu
Zhiwei Steven Wu
Virginia Smith
FedML
106
56
0
16 Jun 2022
Subject Granular Differential Privacy in Federated Learning
Subject Granular Differential Privacy in Federated Learning
Virendra J. Marathe
Pallika H. Kanani
Daniel W. Peterson
Guy Steele Jr
FedML
61
9
0
07 Jun 2022
12
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